Joint Representation Classification for Collective Face Recognition
Liping Wang, Songcan Chen

TL;DR
This paper introduces a joint representation classification method for collective face recognition that considers correlations among multiple images, improving accuracy and efficiency over traditional sparse representation approaches.
Contribution
The paper proposes a novel joint representation classification (JRC) framework that codes multiple images simultaneously, along with an efficient iterative quadratic method for solving the optimization problem.
Findings
JRC outperforms state-of-the-art methods in accuracy on public face databases.
The practical IQM reduces computational cost significantly.
JRC effectively leverages correlations among multiple images for better recognition.
Abstract
Sparse representation based classification (SRC) is popularly used in many applications such as face recognition, and implemented in two steps: representation coding and classification. For a given set of testing images, SRC codes every image over the base images as a sparse representation then classifies it to the class with the least representation error. This scheme utilizes an individual representation rather than the collective one to classify such a set of images, doing so obviously ignores the correlation among the given images. In this paper, a joint representation classification (JRC) for collective face recognition is proposed. JRC takes the correlation of multiple images as well as a single representation into account. Under the assumption that the given face images are generally related to each other, JRC codes all the testing images over the base images simultaneously to…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Face and Expression Recognition · Machine Learning and ELM
